时间增强3D捕捉房间大小的动态场景与商品深度相机

Mingsong Dou, H. Fuchs
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引用次数: 33

摘要

在本文中,我们介绍了一个系统来捕捉增强的三维结构的一个房间大小的动态场景与商品深度相机,如微软Kinects。捕捉整个充满活力的房间是一项挑战。首先,由于房间体积大和相机的最佳工作距离有限的冲突,深度相机的原始数据存在噪声。其次,物体之间的严重遮挡导致捕获的3D数据严重缺失。我们的系统结合了时间信息,以实现整个房间的无噪声和完整的3D捕获。更具体地说,我们离线预先扫描房间的静态部分,并在线跟踪它们的运动。对于动态对象,我们在帧之间执行非刚性对齐并随时间累积数据。我们的系统还支持对象的拓扑变化及其相互作用。我们用不同的情况来证明我们的系统是成功的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Temporally enhanced 3D capture of room-sized dynamic scenes with commodity depth cameras
In this paper, we introduce a system to capture the enhanced 3D structure of a room-sized dynamic scene with commodity depth cameras such as Microsoft Kinects. It is challenging to capture the entire dynamic room. First, the raw data from depth cameras are noisy due to the conflicts of the room's large volume and cameras' limited optimal working distance. Second, the severe occlusions between objects lead to dramatic missing data in the captured 3D. Our system incorporates temporal information to achieve a noise-free and complete 3D capture of the entire room. More specifically, we pre-scan the static parts of the room offline, and track their movements online. For the dynamic objects, we perform non-rigid alignment between frames and accumulate data over time. Our system also supports the topology changes of the objects and their interactions. We demonstrate the success of our system with various situations.
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